
Artificial intelligence is no longer a future concept. It is a core part of business strategy for companies across nearly every sector. But while the interest is high, many organisations struggle with one key question: how to build an AI team from the ground up.
Whether you are a tech startup launching your first AI product or a more traditional business looking to innovate, hiring the right people is where it all begins. As a specialist tech recruiter, we have worked with clients at every stage of their AI journey. Here is what you need to know.
1. Clarify your AI vision and business goals
The first and most important step is understanding your why. What are you trying to achieve by building an AI team? Are you looking to streamline operations, improve customer insights, develop a new product or automate manual tasks?
Being clear on your goals will help define the type of AI solutions you need, and by extension, the type of talent required. For example, if your goal is to enhance customer experience through natural language processing, your first hire will look very different to someone aiming to implement computer vision or predictive maintenance.
Avoid the common mistake of hiring before defining your purpose. A well-thought-out AI strategy will save you money, time and confusion in the long run.
2. Understand the key roles in an AI team
Once your objectives are defined, the next step is to understand the make-up of an AI team. While every team will look different depending on the project scope, here are the most common and essential roles:
- Data Scientist
Responsible for analysing large datasets, identifying patterns, and building predictive models to solve business problems. - Machine Learning Engineer
Specialises in designing, building and deploying machine learning systems that improve over time with more data. - AI Product Manager
Aligns the technical work with business goals, sets priorities and ensures the team delivers value. - Data Engineer
Builds and maintains the infrastructure needed to collect, clean, store and access large volumes of data. - Software Engineer
Collaborates with data teams to integrate AI models into user-facing applications and ensure scalability. - AI Ethicist or Analyst
Ensures responsible use of data and compliance with legal, ethical and societal considerations.
You may not need to hire all of these roles at once. Start with what aligns best with your current goals, then expand as your AI capabilities grow.

3. Prioritise adaptability and curiosity
AI is a fast-moving field. Technologies, tools and approaches evolve rapidly, and what is cutting edge today may be outdated in a year. That is why mindset is just as important as technical skill.
When building your team, look for candidates who are naturally curious, open to learning and able to adapt quickly. People who thrive in ambiguity, enjoy problem solving and are excited about experimentation are far more likely to succeed in a growing AI function.
A strong cultural fit will also help maintain collaboration between technical and non-technical team members. In the early stages, hiring individuals who can wear multiple hats is often more valuable than specialists with a narrow focus.
4. Do not try to do it all in-house
Trying to build your AI team entirely in-house can slow you down and increase risk, especially if your internal team is unfamiliar with AI recruitment. The market for AI talent is highly competitive, with demand far outweighing supply in many areas.
Working with a specialist recruiter can make a significant difference. At Adria Solutions, we help companies define their hiring needs, shape realistic job descriptions and connect them with candidates who are not only skilled, but also aligned with their mission and culture.
We know where to find AI talent, how to assess it, and how to position your business to attract the right people. Partnering with a recruiter saves you time, reduces hiring mistakes and helps build your AI capability with confidence.

5. Build a team that can scale
While it might be tempting to focus on your first hire, it is crucial to think ahead. AI is not a one-person job. Sustainable success depends on having a team that can grow together and evolve with your organisation.
Ask yourself:
- What additional roles will be needed six months from now?
- How will team members work together across departments?
- Do we have the right infrastructure and support in place?
- What tools and platforms do we need for long-term efficiency?
Hiring with scalability in mind will help you avoid talent gaps, project delays and internal friction later down the line.
6. Invest in a strong data foundation
Even the best AI team cannot succeed without quality data. Before bringing in data scientists or ML engineers, make sure you have the right data infrastructure in place.
This means:
- Ensuring access to clean, relevant, and well-organised data
- Understanding where your data comes from and how it is used
- Having the right security and governance policies in place
- Investing in tools that make data accessible to your team
Your AI team will thank you, and your projects will run more smoothly with fewer unexpected roadblocks.

Final thoughts
Knowing how to build an AI team is not just a technical challenge, it is a strategic one. From setting clear objectives to hiring the right blend of skills and mindsets, every decision plays a part in your long-term success.
Start small, stay focused on value, and build with flexibility in mind. You do not need to have all the answers right away. You just need to take the first step.
If you are ready to build your AI team or want guidance on where to begin, the team at Adria Solutions is here to help. We specialise in sourcing top tech and AI talent for companies across the UK, and we would love to be part of your journey.

Nick Derham
Director • C-Suite Executive Recruitment Specialist
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